# Ultralytics YOLO 🚀, GPL-3.0 license

from itertools import repeat
from multiprocessing.pool import ThreadPool
from pathlib import Path

import cv2
import numpy as np
import torch
import torchvision
from tqdm import tqdm

from ..utils import NUM_THREADS, TQDM_BAR_FORMAT, is_dir_writeable
from .augment import Compose, Format, Instances, LetterBox, classify_albumentations, classify_transforms, v8_transforms
from .base import BaseDataset
from .utils import HELP_URL, LOCAL_RANK, LOGGER, get_hash, img2label_paths, verify_image_label


class YOLODataset(BaseDataset):
    cache_version = '1.0.1'  # dataset labels *.cache version, >= 1.0.0 for YOLOv8
    rand_interp_methods = [cv2.INTER_NEAREST, cv2.INTER_LINEAR, cv2.INTER_CUBIC, cv2.INTER_AREA, cv2.INTER_LANCZOS4]
    """
    Dataset class for loading images object detection and/or segmentation labels in YOLO format.

    Args:
        img_path (str): path to the folder containing images.
        imgsz (int): image size (default: 640).
        cache (bool): if True, a cache file of the labels is created to speed up future creation of dataset instances
        (default: False).
        augment (bool): if True, data augmentation is applied (default: True).
        hyp (dict): hyperparameters to apply data augmentation (default: None).
        prefix (str): prefix to print in log messages (default: '').
        rect (bool): if True, rectangular training is used (default: False).
        batch_size (int): size of batches (default: None).
        stride (int): stride (default: 32).
        pad (float): padding (default: 0.0).
        single_cls (bool): if True, single class training is used (default: False).
        use_segments (bool): if True, segmentation masks are used as labels (default: False).
        use_keypoints (bool): if True, keypoints are used as labels (default: False).
        names (list): class names (default: None).

    Returns:
        A PyTorch dataset object that can be used for training an object detection or segmentation model.
    """

    def __init__(self,
                 img_path,
                 imgsz=640,
                 cache=False,
                 augment=True,
                 hyp=None,
                 prefix='',
                 rect=False,
                 batch_size=None,
                 stride=32,
                 pad=0.0,
                 single_cls=False,
                 use_segments=False,
                 use_keypoints=False,
                 names=None):
        self.use_segments = use_segments
        self.use_keypoints = use_keypoints
        self.names = names
        assert not (self.use_segments and self.use_keypoints), 'Can not use both segments and keypoints.'
        super().__init__(img_path, imgsz, cache, augment, hyp, prefix, rect, batch_size, stride, pad, single_cls)

    def cache_labels(self, path=Path('./labels.cache')):
        """Cache dataset labels, check images and read shapes.
        Args:
            path (Path): path where to save the cache file (default: Path('./labels.cache')).
        Returns:
            (dict): labels.
        """
        x = {'labels': []}
        nm, nf, ne, nc, msgs = 0, 0, 0, 0, []  # number missing, found, empty, corrupt, messages
        desc = f'{self.prefix}Scanning {path.parent / path.stem}...'
        total = len(self.im_files)
        with ThreadPool(NUM_THREADS) as pool:
            results = pool.imap(func=verify_image_label,
                                iterable=zip(self.im_files, self.label_files, repeat(self.prefix),
                                             repeat(self.use_keypoints), repeat(len(self.names))))
            pbar = tqdm(results, desc=desc, total=total, bar_format=TQDM_BAR_FORMAT)
            for im_file, lb, shape, segments, keypoint, nm_f, nf_f, ne_f, nc_f, msg in pbar:
                nm += nm_f
                nf += nf_f
                ne += ne_f
                nc += nc_f
                if im_file:
                    x['labels'].append(
                        dict(
                            im_file=im_file,
                            shape=shape,
                            cls=lb[:, 0:1],  # n, 1
                            bboxes=lb[:, 1:],  # n, 4
                            segments=segments,
                            keypoints=keypoint,
                            normalized=True,
                            bbox_format='xywh'))
                if msg:
                    msgs.append(msg)
                pbar.desc = f'{desc} {nf} images, {nm + ne} backgrounds, {nc} corrupt'
            pbar.close()

        if msgs:
            LOGGER.info('\n'.join(msgs))
        if nf == 0:
            LOGGER.warning(f'{self.prefix}WARNING ⚠️ No labels found in {path}. {HELP_URL}')
        x['hash'] = get_hash(self.label_files + self.im_files)
        x['results'] = nf, nm, ne, nc, len(self.im_files)
        x['msgs'] = msgs  # warnings
        x['version'] = self.cache_version  # cache version
        if is_dir_writeable(path.parent):
            if path.exists():
                path.unlink()  # remove *.cache file if exists
            np.save(str(path), x)  # save cache for next time
            path.with_suffix('.cache.npy').rename(path)  # remove .npy suffix
            LOGGER.info(f'{self.prefix}New cache created: {path}')
        else:
            LOGGER.warning(f'{self.prefix}WARNING ⚠️ Cache directory {path.parent} is not writeable, cache not saved.')
        return x

    def get_labels(self):
        self.label_files = img2label_paths(self.im_files)
        cache_path = Path(self.label_files[0]).parent.with_suffix('.cache')
        try:
            cache, exists = np.load(str(cache_path), allow_pickle=True).item(), True  # load dict
            assert cache['version'] == self.cache_version  # matches current version
            assert cache['hash'] == get_hash(self.label_files + self.im_files)  # identical hash
        except (FileNotFoundError, AssertionError, AttributeError):
            cache, exists = self.cache_labels(cache_path), False  # run cache ops

        # Display cache
        nf, nm, ne, nc, n = cache.pop('results')  # found, missing, empty, corrupt, total
        if exists and LOCAL_RANK in {-1, 0}:
            d = f'Scanning {cache_path}... {nf} images, {nm + ne} backgrounds, {nc} corrupt'
            tqdm(None, desc=self.prefix + d, total=n, initial=n, bar_format=TQDM_BAR_FORMAT)  # display cache results
            if cache['msgs']:
                LOGGER.info('\n'.join(cache['msgs']))  # display warnings
        if nf == 0:  # number of labels found
            raise FileNotFoundError(f'{self.prefix}No labels found in {cache_path}, can not start training. {HELP_URL}')

        # Read cache
        [cache.pop(k) for k in ('hash', 'version', 'msgs')]  # remove items
        labels = cache['labels']
        self.im_files = [lb['im_file'] for lb in labels]  # update im_files

        # Check if the dataset is all boxes or all segments
        lengths = ((len(lb['cls']), len(lb['bboxes']), len(lb['segments'])) for lb in labels)
        len_cls, len_boxes, len_segments = (sum(x) for x in zip(*lengths))
        if len_segments and len_boxes != len_segments:
            LOGGER.warning(
                f'WARNING ⚠️ Box and segment counts should be equal, but got len(segments) = {len_segments}, '
                f'len(boxes) = {len_boxes}. To resolve this only boxes will be used and all segments will be removed. '
                'To avoid this please supply either a detect or segment dataset, not a detect-segment mixed dataset.')
            for lb in labels:
                lb['segments'] = []
        if len_cls == 0:
            raise ValueError(f'All labels empty in {cache_path}, can not start training without labels. {HELP_URL}')
        return labels

    # TODO: use hyp config to set all these augmentations
    def build_transforms(self, hyp=None):
        if self.augment:
            hyp.mosaic = hyp.mosaic if self.augment and not self.rect else 0.0
            hyp.mixup = hyp.mixup if self.augment and not self.rect else 0.0
            transforms = v8_transforms(self, self.imgsz, hyp)
        else:
            transforms = Compose([LetterBox(new_shape=(self.imgsz, self.imgsz), scaleup=False)])
        transforms.append(
            Format(bbox_format='xywh',
                   normalize=True,
                   return_mask=self.use_segments,
                   return_keypoint=self.use_keypoints,
                   batch_idx=True,
                   mask_ratio=hyp.mask_ratio,
                   mask_overlap=hyp.overlap_mask))
        return transforms

    def close_mosaic(self, hyp):
        hyp.mosaic = 0.0  # set mosaic ratio=0.0
        hyp.copy_paste = 0.0  # keep the same behavior as previous v8 close-mosaic
        hyp.mixup = 0.0  # keep the same behavior as previous v8 close-mosaic
        self.transforms = self.build_transforms(hyp)

    def update_labels_info(self, label):
        """custom your label format here"""
        # NOTE: cls is not with bboxes now, classification and semantic segmentation need an independent cls label
        # we can make it also support classification and semantic segmentation by add or remove some dict keys there.
        bboxes = label.pop('bboxes')
        segments = label.pop('segments')
        keypoints = label.pop('keypoints', None)
        bbox_format = label.pop('bbox_format')
        normalized = label.pop('normalized')
        label['instances'] = Instances(bboxes, segments, keypoints, bbox_format=bbox_format, normalized=normalized)
        return label

    @staticmethod
    def collate_fn(batch):
        new_batch = {}
        keys = batch[0].keys()
        values = list(zip(*[list(b.values()) for b in batch]))
        for i, k in enumerate(keys):
            value = values[i]
            if k == 'img':
                value = torch.stack(value, 0)
            if k in ['masks', 'keypoints', 'bboxes', 'cls']:
                value = torch.cat(value, 0)
            new_batch[k] = value
        new_batch['batch_idx'] = list(new_batch['batch_idx'])
        for i in range(len(new_batch['batch_idx'])):
            new_batch['batch_idx'][i] += i  # add target image index for build_targets()
        new_batch['batch_idx'] = torch.cat(new_batch['batch_idx'], 0)
        return new_batch


# Classification dataloaders -------------------------------------------------------------------------------------------
class ClassificationDataset(torchvision.datasets.ImageFolder):
    """
    YOLOv5 Classification Dataset.
    Arguments
        root:  Dataset path
        transform:  torchvision transforms, used by default
        album_transform: Albumentations transforms, used if installed
    """

    def __init__(self, root, augment, imgsz, cache=False):
        super().__init__(root=root)
        self.torch_transforms = classify_transforms(imgsz)
        self.album_transforms = classify_albumentations(augment, imgsz) if augment else None
        self.cache_ram = cache is True or cache == 'ram'
        self.cache_disk = cache == 'disk'
        self.samples = [list(x) + [Path(x[0]).with_suffix('.npy'), None] for x in self.samples]  # file, index, npy, im

    def __getitem__(self, i):
        f, j, fn, im = self.samples[i]  # filename, index, filename.with_suffix('.npy'), image
        if self.cache_ram and im is None:
            im = self.samples[i][3] = cv2.imread(f)
        elif self.cache_disk:
            if not fn.exists():  # load npy
                np.save(fn.as_posix(), cv2.imread(f))
            im = np.load(fn)
        else:  # read image
            im = cv2.imread(f)  # BGR
        if self.album_transforms:
            sample = self.album_transforms(image=cv2.cvtColor(im, cv2.COLOR_BGR2RGB))['image']
        else:
            sample = self.torch_transforms(im)
        return {'img': sample, 'cls': j}

    def __len__(self) -> int:
        return len(self.samples)


# TODO: support semantic segmentation
class SemanticDataset(BaseDataset):

    def __init__(self):
        pass
